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Classification of Batik Image using Grey Level Co-occurrence Matrix Feature Extraction and Correlation Based Feature Selection

机译:基于灰度共生矩阵特征提取和基于相关特征选择的蜡染图像分类

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Batik is a cultural heritage that has become part of Indonesian society. Batik has a variety of patterns and motifs. Each region has varieties of motifs in terms of color, texture and production techniques. This study discusses the feature selection method for classification of batik image into Kawung, Lereng, Nitik and Tambal. Selection of the right features by eliminating redundant features can result in higher accuracy. Another important step is feature extraction. This research applies the Gray Level Co-occurrence Matrix feature extraction to extract features in the image of batik. The total features obtained by extracting batik images using GLCM are 20 features. From 20 features, CFS is able to reduce 70% of irrelevant features. The results showed that the classification of batik using Backpropagation resulted in an accuracy of 83% and the classification using the K-Nearest Neighbor method was 67%.
机译:蜡染是一种文化遗产,已成为印度尼西亚社会的一部分。蜡染有多种图案和图案。每个区域在颜色,纹理和生产技术方面都有各种各样的图案。本研究讨论了蜡染图像分类为Kawung,Lereng,Nitik和Tambal的特征选择方法。通过消除冗余功能选择正确的功能可以提高准确性。另一个重要步骤是特征提取。这项研究应用灰度共生矩阵特征提取来提取蜡染图像中的特征。通过使用GLCM提取蜡染图像获得的总特征为20个特征。从20个功能中,CFS可以减少70%的不相关功能。结果表明,使用反向传播对蜡染进行分类的准确度为83%,使用K最近邻法进行的蜡染分类为67%。

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